An MCP server that exposes NumPy functionality
pip install mcp-numpyTo use with Claude Desktop or other MCP clients, add to your mcp.json:
{
"mcpServers": {
"mcp-numpy": {
"command": "mcp-numpy"
}
}
}The server exposes the following NumPy functionality as MCP tools:
np_array- Create a NumPy arraynp_zeros- Create zeros arraynp_ones- Create ones arraynp_full- Create array filled with valuenp_arange- Create array with rangenp_linspace- Create evenly spaced arraynp_eye- Create identity matrixnp_diag- Create diagonal array
np_reshape- Reshape arraynp_transpose- Transpose arraynp_concatenate- Concatenate arraysnp_split- Split arraynp_tile- Tile arraynp_repeat- Repeat elementsnp_squeeze- Remove single-dimensional entriesnp_flatten- Flatten array
np_sum,np_mean,np_std,np_var- Summary statisticsnp_min,np_max,np_argmin,np_argmax- Min/max operationsnp_dot,np_matmul,np_cross- Matrix operationsnp_trace,np_cumsum,np_cumprod,np_diff- Array operations
np_inv- Matrix inversenp_det- Matrix determinantnp_eig- Eigenvalues and eigenvectorsnp_svd- Singular value decompositionnp_solve- Solve linear systemnp_linalg_norm- Matrix/vector norm
np_rand- Random floatsnp_randn- Random normalnp_randint- Random integersnp_random_choice- Random choicenp_shuffle- Shuffle array
np_percentile,np_quantile- Percentiles/quantilesnp_histogram- Histogramnp_correlate,np_corrcoef- Correlation
np_add,np_subtract,np_multiply,np_divide- Arithmeticnp_power,np_mod- Power and modulonp_sqrt,np_abs- Basic mathnp_exp,np_log,np_log10- Logarithmsnp_sin,np_cos,np_tan- Trigonometrynp_arcsin,np_arccos,np_arctan- Inverse trignp_sinh,np_cosh,np_tanh- Hyperbolic
np_shape,np_ndim,np_size,np_dtype- Propertiesnpastype- Type conversion
git clone https://github.com/daedalus/mcp-numpy.git
cd mcp-numpy
pip install -e ".[test]"
# run tests
pytest
# format
ruff format src/ tests/
# lint
ruff check src/ tests/
# type check
mypy src/mcp-name: io.github.daedalus/mcp-numpy